Graduate Program, School of Dentistry, Federal University of Goias, Goiânia, Goiás, Brazil.
Department of Orthodontics, School of Dentistry, Federal University of Goias, Goiânia, Goiás, Brazil.
Oral Surg Oral Med Oral Pathol Oral Radiol. 2024 Sep;138(3):414-426. doi: 10.1016/j.oooo.2024.03.004. Epub 2024 Mar 19.
To evaluate the diagnostic capability of artificial intelligence (AI) for detecting and classifying odontogenic cysts and tumors, with special emphasis on odontogenic keratocyst (OKC) and ameloblastoma.
Nine electronic databases and the gray literature were examined. Human-based studies using AI algorithms to detect or classify odontogenic cysts and tumors by using panoramic radiographs or CBCT were included. Diagnostic tests were evaluated, and a meta-analysis was performed for classifying OKCs and ameloblastomas. Heterogeneity, risk of bias, and certainty of evidence were evaluated.
Twelve studies concluded that AI is a promising tool for the detection and/or classification of lesions, producing high diagnostic test values. Three articles assessed the sensitivity of convolutional neural networks in classifying similar lesions using panoramic radiographs, specifically OKC and ameloblastoma. The accuracy was 0.893 (95% CI 0.832-0.954). AI applied to cone beam computed tomography produced superior accuracy based on only 4 studies. The results revealed heterogeneity in the models used, variations in imaging examinations, and discrepancies in the presentation of metrics.
AI tools exhibited a relatively high level of accuracy in detecting and classifying OKC and ameloblastoma. Panoramic radiography appears to be an accurate method for AI-based classification of these lesions, albeit with a low level of certainty. The accuracy of CBCT model data appears to be high and promising, although with limited available data.
评估人工智能(AI)在检测和分类牙源性囊肿和肿瘤方面的诊断能力,特别关注牙源性角化囊肿(OKC)和造釉细胞瘤。
检查了九个电子数据库和灰色文献。纳入了使用 AI 算法通过全景片或 CBCT 检测或分类牙源性囊肿和肿瘤的基于人类的研究。评估了诊断测试,并对 OKC 和造釉细胞瘤的分类进行了荟萃分析。评估了异质性、偏倚风险和证据确定性。
12 项研究得出结论,AI 是一种有前途的工具,可用于检测和/或分类病变,产生高诊断测试值。有 3 篇文章评估了卷积神经网络在使用全景片分类相似病变(特别是 OKC 和造釉细胞瘤)方面的敏感性。准确率为 0.893(95%置信区间 0.832-0.954)。仅基于 4 项研究,应用于锥形束计算机断层扫描的 AI 产生了更高的准确性。结果表明,所使用的模型存在异质性,影像学检查存在差异,以及指标的呈现存在差异。
AI 工具在检测和分类 OKC 和造釉细胞瘤方面表现出相对较高的准确性。全景片似乎是基于 AI 对这些病变进行分类的一种准确方法,尽管确定性较低。CBCT 模型数据的准确性似乎很高且有前途,但可用数据有限。